SurfaceBench / README.md
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metadata
license: mit
language:
  - en
tags:
  - symbolic-regression
  - function-approximation
  - 3d-surfaces
  - geometric-learning
  - scientific-discovery
  - equation-discovery
  - benchmark
size_categories:
  - 10K<n<100K

SurfaceBench: Benchmark for Scientific Surface Discovery

This dataset contains a comprehensive collection of symbolic regression problems focused on 3D surface modeling. The dataset includes 15 different categories of surface types, each with multiple instances, providing a diverse benchmark for symbolic regression algorithms.

drawing

Dataset Structure

The dataset is organized in HDF5 format with the following structure:

/
├── Category_1/
│   ├── Instance_1/
│   │   ├── train_data (5000, 3) - Training data [x, y, z]
│   │   ├── test_data (500, 3) - Test data [x, y, z]
│   │   └── ood_test (500, 3) - Out-of-distribution test data [x, y, z]
│   └── Instance_2/
│       └── ...
└── Category_2/
    └── ...

Categories

  1. Nonlinear_Analytic_Composition_Surfaces (11 instances)
  2. Piecewise-Defined_Surfaces (10 instances)
  3. Mixed_Transcendental_Analytic_Surfaces (9 instances)
  4. Conditional_Multi-Regime_Surfaces (9 instances)
  5. Oscillatory_Composite_Surfaces (11 instances)
  6. Trigonometric–Exponential_Composition_Surfaces (10 instances)
  7. Multi-Operator_Composite_Surfaces (10 instances)
  8. Elementary_Bivariate_Surfaces (10 instances)
  9. Discrete_Integer-Grid_Surfaces (10 instances)
  10. Nonlinear_Coupled_Surfaces (10 instances)
  11. Exponentially-Modulated_Trigonometric_Surfaces (10 instances)
  12. Localized_and_Radially-Decaying_Surfaces (10 instances)
  13. Polynomial–Transcendental_Mixtures (9 instances)
  14. High-Degree_Implicit_Surfaces (24 instances)
  15. Parametric_Multi-Output_Surfaces (30 instances)

Data Format

  • Input: 2D coordinates (x, y)
  • Output: Surface height (z)
  • Training set: 5,000 points per instance
  • Test set: 500 points per instance
  • Out-of-distribution test: 500 points per instance
  • Data type: float64

Usage

import h5py
import numpy as np
# Load the dataset
with h5py.File('dataset.h5', 'r') as f:
    # Access a specific category and instance
    category = 'Elementary_Bivariate_Surfaces'
    instance = 'EBS1'
    
    # Load training data
    train_data = f[f'{category}/{instance}/train_data'][:]
    X_train = train_data[:, :2]  # x, y coordinates
    y_train = train_data[:, 2]   # z values
    
    # Load test data
    test_data = f[f'{category}/{instance}/test_data'][:]
    X_test = test_data[:, :2]
    y_test = test_data[:, 2]
    
    # Load out-of-distribution test data
    ood_data = f[f'{category}/{instance}/ood_test'][:]
    X_ood = ood_data[:, :2]
    y_ood = ood_data[:, 2]

Applications

This dataset is designed for:

  • Symbolic regression algorithm benchmarking
  • 3D surface modeling and reconstruction
  • Function approximation research
  • Out-of-distribution generalization studies
  • Multi-modal symbolic learning

Citation

If you find our code and data useful, please cite our paper:

@article{kabra2026surfacebenchgeometryawarebenchmarksymbolic,
      title={SURFACEBENCH: A Geometry-Aware Benchmark for Symbolic Surface Discovery}, 
      author={Sanchit Kabra and Shobhnik Kriplani and Parshin Shojaee and Chandan K. Reddy},
      journal={arXiv preprint arXiv:2511.10833},
      year={2026}
}

License

MIT License